Introduction to Analytics Modeling

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Course Features

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Duration

16 weeks

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Delivery Method

Online

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Available on

Limited Access

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Accessibility

Mobile, Desktop, Laptop

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Language

English

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Subtitles

English

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Level

Advanced

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Effort

10 hours per week

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Teaching Type

Instructor Paced

Course Description

Analytical models are key to understanding data, generating predictions, and making business decisions. Without models it’s nearly impossible to gain insights from data. In modeling, it’s essential to understand how to choose the right data sets, algorithms, techniques and formats to solve a particular business problem.

In this course, part of the Analytics: Essential Tools and Methods MicroMasters program, you’ll gain an intuitive understanding of fundamental models and methods of analytics and practice how to implement them using common industry tools like R.

You’ll learn about analytics modeling and how to choose the right approach from among the wide range of options in your toolbox.

You will learn how to use statistical models and machine learning as well as models for:

  • Classification
  • Clustering
  • Change detection
  • Data smoothing
  • Validation
  • Prediction
  • Optimization
  • Experimentation
  • Decision making.

Course Overview

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Live Class

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Human Interaction

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Personlized Teaching

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International Faculty

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Post Course Interactions

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Instructor-Moderated Discussions

Skills You Will Gain

Prerequisites/Requirements

Basic calculus

Basic programming proficiency

Linear algebra

Probability and statistics

What You Will Learn

Fundamental analytics models and methods

How to use analytics software, including R, to implement various types of models

Understanding of when to apply specific analytics models

Course Instructors

Joel Sokol

Professor and Director of the Master of Science in Analytics Program (On campus and Online)

He received his PhD in operations research from MIT and his bachelor's degrees in mathematics, computer science, and applied sciences in engineering from Rutgers University. His primary research inte...
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